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English
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EBA 3530
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7.5 stp
Introduksjon
This course provides a comprehensive introduction to machine learning and pattern recognition. The curriculum examines core statistical and algorithmic methodologies designed to predict outcomes, classify entities, identify clustering patterns, and generate synthetic data. Students will develop the capability to critically evaluate and rigorously apply these techniques to solve forecasting and analytical problems. Mastery of this material equips candidates to conduct independent applied data science work or proceed to advanced studies in the field.
Kursets innhold
- Key machine learning algorithms for regression, classification, and clustering, such as hierarchical clustering and K-means.
- Linear discriminant functions and the perceptron model
- Principles of artificial neural networks, such as the multilayer perceptron model, activation functions, and optimization techniques.
- Generative models such as autoencoders, variational autoencoders.
Forbehold
Dette er et utdrag fra den komplette kursbeskrivelsen for kurset. Dersom du er aktiv student på BI, kan du finne de komplette kursbeskrivelsene med informasjon om bl.a. læringsmål, læreprosess, pensum og eksamen på portal.bi.no. Vi tar forbehold om endringer i denne beskrivelsen.